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Citation: Lei Ren, Zuohua Miao, Ziqiang Li, Likun Liu, Yang Tang, Mengting Wang, Yuan Xie. Worker Identification in Hazardous Areas Based on YOLOv3 Algorithm. Journal of Information Technologyin Civil Engineering and Architecture, 2022, 14(2): 10-17. doi: 10.16670/j.cnki.cn11-5823/tu.2022.02.02

2022, 14(2): 10-17. doi: 10.16670/j.cnki.cn11-5823/tu.2022.02.02

Worker Identification in Hazardous Areas Based on YOLOv3 Algorithm

1. 

School of Resources and Environmental Engineering, Wuhan University of Science and Technology, Wuhan, Hubei 430081, China

2. 

Key Laboratory of Hubei Province for Efficient Utilization of Metallurgical Mineral Resources and Block Building, Wuhan, Hubei 430081, China

3. 

School of Chemistry and Chemical Engineering, Shanghai University of Engineering Science, Shanghai 201620, China

Corresponding author: 苗作华,

Web Publishing Date: 2022-04-01

Fund Project: 国家自然科学基金 41701624国家自然科学基金 41071242国家自然科学基金 41271449湖北省大学生创新训练项目 S202010488021

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Worker Identification in Hazardous Areas Based on YOLOv3 Algorithm

Lei Ren, Zuohua Miao, Ziqiang Li, Likun Liu, Yang Tang, Mengting Wang, Yuan Xie

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